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题名Enhancing Collaborative Inference on Heterogeneous Edge Devices via Adaptive Ensemble Knowledge Distillation
作者
发表日期2025
发表期刊IEEE Journal on Selected Areas in Communications
ISSN/eISSN0733-8716
摘要

The integration of edge computing with deep neural networks (DNNs) is crucial for intelligent industrial cyber-physical systems. Typically, deploying DNNs on heterogeneous edge devices relies on methods like model compression and partitioning. However, these approaches often result in homogeneous models across devices. This homogeneity limits the collective capability of edge computing systems, particularly in terms of generalization to diverse data distributions and adaptation to dynamic industrial environments. In this work, we propose to treat each DNN on an edge device as an independent model, aggregating their capabilities via ensemble learning to enhance generalization and dynamic adaptability. To realize this, we introduce the Adaptive Ensemble Knowledge Distillation Framework (AEKDF), combining cloud-based model training with edge computing based collaborative inference. In the cloud, AEKDF develops an enhanced Born Again Network that generates diverse, lightweight models tailored to specific edge devices through knowledge distillation. This process ensures model diversity which is critical to effective ensemble learning. On the edge, AEKDF employs an adaptive ensemble technique that aggregates prediction logits across devices, enabling rapid adaptation to changing environments and maintaining inference efficiency. Our extensive evaluations conducted on a realistic prototype demonstrate the substantial boost in predictive performance achieved by our AEKDF, showcasing a 4% to 10% accuracy improvement on the CIFAR-100 compared to conventional single-model approaches, while maintaining low latency.

关键词Deep Neural Networks Edge Computing Ensemble Learning Industrial Internet of Things
DOI10.1109/JSAC.2025.3574594
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语种英语English
Scopus入藏号2-s2.0-105006919365
引用统计
文献类型期刊论文
条目标识符https://repository.uic.edu.cn/handle/39GCC9TT/13079
专题理工科技学院
通讯作者Wang, Tian
作者单位
1.Beijing Normal-Hong Kong Baptist University,Guangdong Provincial/Zhuhai Key Laboratory of IRADS,Department of Computer Science,Zhuhai,China
2.Hong Kong Baptist University,Hong Kong,Hong Kong
3.Hong Kong Baptist University,Department of Interactive Media,Hong Kong,Hong Kong
4.Beijing Normal University,Institute of Artificial Intelligence and Future Networks,Zhuhai,China
5.Xi'an University of Posts and Telecommunications,Shaanxi Key Laboratory of Information Communication Network and Security,Xi'an,Shaanxi,China
6.Hunan University,College of Computer Science and Electronic Engineering,Changsha,China
7.University of Technology Sydney,School of Computer Science,Sydney,Australia
8.The Hong Kong Polytechnic University,Department of Computing,Hong Kong,Hong Kong
第一作者单位北师香港浸会大学
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Wu, Shangrui,Li, Yupeng,Wang, Wenhuaet al. Enhancing Collaborative Inference on Heterogeneous Edge Devices via Adaptive Ensemble Knowledge Distillation[J]. IEEE Journal on Selected Areas in Communications, 2025.
APA Wu, Shangrui., Li, Yupeng., Wang, Wenhua., Guo, Jianxiong., Fan, Wentao., .. & Wang, Tian. (2025). Enhancing Collaborative Inference on Heterogeneous Edge Devices via Adaptive Ensemble Knowledge Distillation. IEEE Journal on Selected Areas in Communications.
MLA Wu, Shangrui,et al."Enhancing Collaborative Inference on Heterogeneous Edge Devices via Adaptive Ensemble Knowledge Distillation". IEEE Journal on Selected Areas in Communications (2025).
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